On collapsed representation of hierarchical Completely Random Measures

6 Sep 2015Gaurav PandeyAmbedkar Dukkipati

The aim of the paper is to provide an exact approach for generating a Poisson process sampled from a hierarchical CRM, without having to instantiate the infinitely many atoms of the random measures. We use completely random measures~(CRM) and hierarchical CRM to define a prior for Poisson processes... (read more)

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